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Model-Based-Approach for Fault Diagnosis. 2. Extension to Interval Systems

机译:故障诊断的基于模型的方法。 2.间隔系统的扩展

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摘要

Since chemical processes are often operated over a range of operating conditions and some of the system parameters are only known to a certain degree, uncertainties exist in the process model. Interval types of process models offer an attractive alternative for process description in an operating environment. In terms of fault diagnosis, an interval process model based diagnostic system is robust as compared to conventional quantitative model-based systems. In this work, an interval model is incorporated into the deep model algorithm (DMA) for fault diagnosis. A design procedure is given, and characteristics of interval DMA are also discussed. One unique property is that the interval parity equations generally give better diagnostic resolution than the crisp ones under the DMA framework. A CSTR example with interval coefficients is used to illustrate the design and effectiveness of the interval DMA. Results show that the proposed method is not only successful in handling wide range of operating conditions but also capable of identifying correct fault origins accurately.
机译:由于化学过程通常在一定范围的操作条件下运行,并且某些系统参数仅在一定程度上已知,因此过程模型中存在不确定性。过程模型的间隔类型为操作环境中的过程描述提供了一种有吸引力的替代方法。在故障诊断方面,与传统的基于定量模型的系统相比,基于间隔过程模型的诊断系统是可靠的。在这项工作中,将间隔模型合并到用于故障诊断的深度模型算法(DMA)中。给出了设计过程,并讨论了间隔DMA的特性。一个独特的特性是,间隔奇偶校验方程通常比DMA框架下的清晰方程具有更好的诊断分辨率。带有间隔系数的CSTR示例用于说明间隔DMA的设计和有效性。结果表明,所提出的方法不仅能够成功处理各种工作条件,而且能够准确地识别出正确的故障源。

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